Literature DB >> 31158898

Computer Vision Technology in the Differential Diagnosis of Cushing's Syndrome.

Kathrin Hannah Popp1,2, Robert Philipp Kosilek1, Richard Frohner1, Günther Karl Stalla1,2, AnastasiaP Athanasoulia-Kaspar2, ChristinaM Berr1, Stephanie Zopp1, Martin Reincke1, Matthias Witt1, Rolf P Würtz3, Timo Deutschbein4, Marcus Quinkler5, Harald Jörn Schneider1.   

Abstract

OBJECTIVE: Cushing's syndrome is a rare disease characterized by clinical features that show morphological similarity with the metabolic syndrome. Distinguishing these diseases in clinical practice is challenging. We have previously shown that computer vision technology can be a potentially useful diagnostic tool in Cushing's syndrome. In this follow-up study, we addressed the described problem by increasing the sample size and including controls matched by body mass index.
METHODS: We enrolled 82 patients (22 male, 60 female) and 98 control subjects (32 male, 66 female) matched by age, gender and body-mass-index. The control group consisted of patients with initially suspected, but biochemically excluded Cushing's syndrome. Standardized frontal and profile facial digital photographs were acquired. The images were analyzed using specialized computer vision and classification software. A grid of nodes was semi-automatically placed on disease-relevant facial structures for analysis of texture and geometry. Classification accuracy was calculated using a leave-one-out cross-validation procedure with a maximum likelihood classifier.
RESULTS: The overall correct classification rates were 10/22 (45.5%) for male patients and 26/32 (81.3%) for male controls, and 34/60 (56.7%) for female patients and 43/66 (65.2%) for female controls. In subgroup analyses, correct classification rates were higher for iatrogenic than for endogenous Cushing's syndrome.
CONCLUSION: Regarding the advanced problem of detecting Cushing's syndrome within a study sample matched by body mass index, we found moderate classification accuracy by facial image analysis. Classification accuracy is most likely higher in a larger sample with healthy control subjects. Further studies might pursue a more advanced analysis and classification algorithm. © Georg Thieme Verlag KG Stuttgart · New York.

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Mesh:

Year:  2019        PMID: 31158898     DOI: 10.1055/a-0887-4233

Source DB:  PubMed          Journal:  Exp Clin Endocrinol Diabetes        ISSN: 0947-7349            Impact factor:   2.949


  5 in total

Review 1.  Current applications of artificial intelligence combined with urine detection in disease diagnosis and treatment.

Authors:  Jun Tan; Feng Qin; Jiuhong Yuan
Journal:  Transl Androl Urol       Date:  2021-04

Review 2.  Machine intelligence in non-invasive endocrine cancer diagnostics.

Authors:  Nicole M Thomasian; Ihab R Kamel; Harrison X Bai
Journal:  Nat Rev Endocrinol       Date:  2021-11-09       Impact factor: 43.330

3.  Recognising and diagnosing Cushing's syndrome in primary care: challenging but not impossible.

Authors:  Kate Scoffings; Damian Morris; Andrew Pullen; Sharon Temple; Anna Trigell; Mark Gurnell
Journal:  Br J Gen Pract       Date:  2022-07-28       Impact factor: 6.302

Review 4.  Review on Facial-Recognition-Based Applications in Disease Diagnosis.

Authors:  Jiaqi Qiang; Danning Wu; Hanze Du; Huijuan Zhu; Shi Chen; Hui Pan
Journal:  Bioengineering (Basel)       Date:  2022-06-23

Review 5.  Toward a Diagnostic Score in Cushing's Syndrome.

Authors:  Leah T Braun; Anna Riester; Andrea Oßwald-Kopp; Julia Fazel; German Rubinstein; Martin Bidlingmaier; Felix Beuschlein; Martin Reincke
Journal:  Front Endocrinol (Lausanne)       Date:  2019-11-08       Impact factor: 5.555

  5 in total

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